Feature selection in conditional random fields for activity recognition

Douglas L. Vail, J. Lafferty, M. Veloso
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引用次数: 51

Abstract

Temporal classification, such as activity recognition, is a key component for creating intelligent robot systems. In the case of robots, classification algorithms must robustly incorporate complex, non-independent features extracted from streams of sensor data. Conditional random fields are discriminatively trained temporal models that can easily incorporate such features. However, robots have few computational resources to spare for computing a large number of features from high bandwidth sensor data, which creates opportunities for feature selection. Creating models that contain only the most relevant features reduces the computational burden of temporal classification. In this paper, we show that lscr1 regularization is an effective technique for feature selection in conditional random fields. We present results from a multi-robot tag domain with data from both real and simulated robots that compare the classification accuracy of models trained with lscr1 regularization, which simultaneously smoothes the model and selects features; lscr2 regularization, which smoothes to avoid over-fitting, but performs no feature selection; and models trained with no smoothing.
活动识别中条件随机场的特征选择
时间分类,如活动识别,是创建智能机器人系统的关键组成部分。以机器人为例,分类算法必须稳健地结合从传感器数据流中提取的复杂、非独立特征。条件随机场是判别训练的时间模型,可以很容易地包含这些特征。然而,机器人几乎没有多余的计算资源来从高带宽传感器数据中计算大量特征,这为特征选择创造了机会。创建只包含最相关特征的模型可以减少时间分类的计算负担。本文证明了lscr1正则化是一种有效的条件随机场特征选择技术。我们展示了来自真实和模拟机器人的多机器人标签域的结果,比较了使用lscr1正则化训练的模型的分类精度,lscr1正则化同时平滑模型并选择特征;Lscr2正则化,平滑以避免过拟合,但不进行特征选择;没有平滑训练的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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